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Despite the abundant research on economic development, corruption and political instability, little research has attempted to examine whether there is a causal relationship among them. This pa- per examines the causal relationship among corruption, political instability and economic devel- opment in the ECOWAS using the Granger causality test within a multivariate cointegration and error-correction framework for the 1996-2012 period. The findings indicate that political instability Granger-causes economic development in the short term, while political instability and economic development Granger-cause corruption in the long term. In addition, we employed the forecast error variance decomposition and impulse response function analyses to investigate the dynamic interaction between the variables. The results demonstrate positive unidirectional Granger causal- ity from political instability to economic development in the short term and positive unidirectional Granger causality from political instability and economic development to corruption in the long term in ECOWAS countries. Thus, ECOWAS governments should employ policies to promote politi- cal stability in the region.

Introduction

There is broad consensus that the Economic Commu- nity of West African States (ECOWAS) is one of the least developed regions in the world. Furthermore, the region has continued to face rising corruption and

political instability, which in turn contribute to the region’s underdevelopment through adverse effects on government revenue, production, savings, invest- ment, growth, income distribution and poverty (see Aisen & Veiga, 2013; Asiedu & Freeman, 2009; Alesina

& Perotti, 1996; Edwards, 1996; Fosu, 1992; Ghura, 2002; Gyimah-Brempong, 2002; Gyimah-Brempong

& Dapaah, 1996; Gyimah-Brempong & Traynor, 1999;

Oto-Peralías, Romero-Ávila, & Usabiaga, 2013). Al- though researchers have established that corruption is harmful to an economy (see Gyimah-Brempong, 2002;

Corruption, Political Instability and

Economic Development in the Economic Community of West African States

(ECOWAS): Is There a Causal Relationship?

ABSTRACT

E21 KEY WORDS:

JEL Classification:

Corruption, Political instability, Economic development, ECOWAS

1 Othman Yeop Abdullah Graduate School of Business, Univeristi Utara Malaysia, 06010 Sintok, Kedah, Malaysia; 2School of Economics, Finance and Banking, Univeristi Utara Malaysia, 06010 Sintok, Kedah, Malaysia

Correspondence concerning this article should be addressed to:

Mohd Zaini Abd Karim, Othman Yeop Abdullah Graduate School of Business, Universiti Utara Malaysia, 06010 Sintok, Kedah, Malaysia. Fax no.: 604-9287160, Tel: 604-9287131. E-mail:

agrivetent@gmail.com

Nurudeen Abu1, Mohd Zaini Abd Karim1, Mukhriz Izraf Azman Aziz2 Primary submission: 22.09.2014 | Final acceptance: 06.10.2014

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Mauro, 1995), we have observed the coexistence of high levels of corruption and economic development in some Asian countries, such as China. This observa- tion is not surprising, as Leff (1964) and Huntington (1968) suggested that corruption can have positive impact on the economy via increased efficiency in countries where the bureaucracy is inefficient and con- stitutes a barrier to investment. This statement reflects the “grease the wheels” hypothesis. For instance, entre- preneurs pay bribes to government officials (grease the wheels) to reduce the time that they spend in queues to obtain business permits, licenses or contract ap- proval. This system in turn increases efficiency and investment and, as a result, economic growth (Méon

& Sekkat, 2005). In addition, Goldsmith (1999) cited cases in which entrepreneurs greased the wheels and won contracts even at inflated prices, thus facilitating construction of the intercontinental railway system in the United States.

However, the level of economic development (or income level) plays an important role in promot- ing or reducing corruption and political instability.

Mauro (1995) noted that low-income (less devel- oped) countries tend to be corrupt and politically unstable. Hence, higher-income countries (with improvements in economic conditions) tend to have lesser corruption (Montinola & Jackman, 2002; Van Rijckeghem & Weder, 2001; Schumacher, 2013) and higher political stability (Adelman & Morris, 1968;

Helliwell, 1994). Corruption and political instabil- ity, including economic development, seem to rein- force one another, at least in the ECOWAS region.

Whereas the military allude to corruption and poor economic conditions, among other things, for seiz- ing power or staging a coup, it has also been accused of engaging in massive corruption and failing to bring the majority of citizens out of poverty (Edi, 2006). Moreover, some scholars hold the view that corruption is an important determinant of political instability (Mauro, 2004; Mbaku & Paul, 1989). Oth- er authors claim that political instability accounts for the high level corruption found in many coun- tries (Billger & Goel, 2009; Campbell & Saha, 2013;

Park, 2003; Serra, 2006; Shabbir & Anwar, 2007;

Zhang, Cao, & Vaughn, 2009) and that political sta- bility tends to moderate the adverse effects of cor- ruption in an economy (Habib & Zurawicki, 2001).

The various reports of Transparency International (TI), which publishes the corruption perception in- dex (CPI), suggest that most ECOWAS countries are highly corrupt. Of the 15 countries in the ECOWAS region, only Cape Verde is among the top 50 in the TI ranking in the past few years. Similarly, the Political Risk Service International Country Risk Guide (ICRG) political risk rating, which reflects the extent of politi- cal uncertainty, demonstrates that ECOWAS countries are politically unstable. Many ECOWAS countries have had an average rating of less than 60% for several years, indicating that they have been experiencing seri- ous political problems.

Despite the abundant research on economic devel- opment, corruption and political instability, few at- tempts have been made to examine whether there is a causal relationship among them. Most studies have focused on the relationship between two of the vari- ables, while studies examining the association among the three variables are almost non-existent. For in- stance, researchers have investigated the causal effects of the relationships between corruption and develop- ment/growth (Bentzen, 2012; Blackburn & Forgues- Puccio, 2007; Gyimah-Brempong, 2002; Mauro, 1995;

Ugur & Dasgupta, 2011), political instability and de- velopment/growth (Aisen & Veiga, 2013; Alesina et al., 1996; Comeau, 2003; Fosu, 2002a, 2002b; Mbaku, 1988), and corruption and political conditions (Mba- ku & Paul, 1989; Montinola & Jackman, 2002). To our knowledge, this work is the first attempt to investigate the causal relationship among corruption, political instability, and economic development within a multi- variate cointegration and error-correction framework in ECOWAS countries. An investigation of the causal relationship between corruption/political instabil- ity and economic development, for instance, is highly important because it provides useful information on which variables governments should emphasize. If the results of the causality test reveal that corruption causes political instability, then authorities can em- ploy measures to reduce corruption to attain higher political stability. However, if the results indicate that it is political instability that precedes corruption, then governments can design policies to promote political stability with the goal of making society corruption- free. Similarly, if the causality test suggests that eco- nomic development causes corruption and/or political

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instability, then governments can implement policies that enhance development to lower corruption and/or promote political stability. It is important to mention that regardless of which hypothesis is true, employing a single policy of economic development or political stability may not be sufficient to solve other problems in ECOWAS countries. Therefore, causality test results can help in prioritizing the policies to be employed.

Hence, the main objective of this paper is to examine the causal relationship among corruption, political instability and economic development in ECOWAS countries. The remainder of the paper is organized as follows. Section two reviews the relevant literatures.

Section three describes the theoretical framework and model, and section four presents and discusses the re- sults. Finally, section five concludes the paper.

Review of relevant literature

Most studies on corruption, political instability and economic development have focused on their causes and consequences. In fact, some authors have found po- litical factors and/or the level of development (income level) to be important determinants of corruption. For instance, Park (2003) employed multiple regression analysis to examine the determinants of corruption across countries. The author discovered that economic freedom, socio-political stability, a tradition of law abid- ance and national cultures are the major factors explain- ing corruption in the countries considered in his study.

Del Monte and Papagni (2007) evaluated the factors responsible for high levels of corruption in Italy during the 1963–2001 period using statistics on crimes against regional public administration. The empirical evidence illustrated that the main causes of corruption include government consumption, the level of development, party concentration, the presence of voluntary organi- zations, and absenteeism in national elections. Zhang et al. (2009) investigated the structural determinants of corruption using data from several sources, and their findings suggested that corruption is influenced to a greater extent by social support, the types of govern- ment and inequality. Furthermore, many studies have demonstrated that higher levels of democracy lead to lower levels of corruption (see Billger & Goel, 2009;

Campbell & Saha, 2013; Emerson, 2006; Goldsmith, 1999; Iwasaki & Suzuki, 2012; Lederman, Loayza, &

Soares, 2005; Serra, 2006; Shabbir & Anwar, 2007).

Meanwhile, some studies have established that corruption has a damaging impact on political con- ditions in a country, whereas others have concluded that higher economic development tends to reduce the level of political crisis in a society. For example, Mbaku and Paul (1989) found a positive relationship between rent seeking (corruption) and destabilization of politi- cal activities. Habib and Zurawicki (2001) concluded that corruption has an adverse effect on both domes- tic and foreign investments and found that the degree of openness and political stability of the host country moderates the influence of corruption. Montinola and Jackman (2002) discovered that corruption is lesser in dictatorships than in partially democratized countries.

In addition, they found that higher levels of democracy reduce corruption. Other important determinants of corruption include membership in the Oil Produc- ing and Exporting Countries (OPEC) and low wages for public sector employees in low-income countries.

Claderon and Chong (2006) confirmed that demo- cratic regimes have a negative association with rent seeking behavior in Uruguay. Moreover, a number of studies have shown that an improvement in economic development (or a higher growth rate) tends to reduce the political instability in a country (see Bollen & Jack- man, 1985; Gasiorowski, 1998; Gupta, Madhavan &

Blee, 1998; Gyimah-Brempong & Traynor, 1999).

The impact of corruption and political instability on economic development or growth has also been empirically investigated. Some studies have con- firmed a negative impact of corruption on growth (see Gyimah-Brempong, 2002; Mauro, 1995; Ugur & Das- gupta, 2011). For instance, Mauro (1995) examined the impact of corruption on economic growth across countries using OLS and TSLS estimators. The author found that corruption has a negative impact on eco- nomic growth. Gyimah-Brempong (2002) employed a dynamic panel estimator to evaluate the effect of corruption on economic growth and income distribu- tion in African countries. The author discovered that corruption decreases economic growth directly and indirectly via reduced investment in physical capital.

Ugur and Dasgupta (2011) employed fixed effects and random effects weighted means to examine the effect of corruption across countries. Their results revealed that corruption has a negative effect on per capita GDP growth. Studies that have also found a negative impact

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Author(s) Objective(s) Empirical evidence Park (2003) Examined the determinants of corruption

across countries

Socio-political stability leads to lower corruption

Serra (2006) Investigated the determinants of corruption in 62 countries

Higher levels of political instability are associated with higher corruption, while the length of preservation of democratic institutions has a negative relationship with corruption

Shabbir and Anwar (2007)

Evaluated economic and non-economic determinants of corruption in 41 developing countries

The level of economic development has a negative effect on corruption

Billger and Goel (2009)

Determined whether greater democracy and economic freedom lead to less corruption in nearly 100 countries

Greater democracy reduces corruption

Lederman et al. (2005)

Examined the determinants of corruption with a primary focus on political institutions that increase accountability across countries from 1975 to 1999

Democracies along with parliamentary systems, political stability, and freedom of press are negatively related to corruption

Mbaku and Paul (1989)

Tested the hypothesis that corruption destabilizes political activities in African countries

Corruption leads to the destabilization of political activities

Bollen and Jackman (1985)

Examined economic and non-economic determinants of political democracy in a sample of almost 100 countries

Economic development was significant in all regression analyses

Gupta et al. (1998)

Analyzed the relationship among democracy, political instability and economic growth in a sample of 120 countries

Growth in income per capita has a positive impact on democracy, but the effect on political violence is negative

Gyimah-Brempong and Traynor (1999)

Explored the relationship between political instability and economic growth in SSA

Higher economic growth leads to lesser political instability

Gyimah-Brempong (2002)

Evaluated the impact of corruption on economic growth and income distribution in African countries

Corruption decreases economic growth directly and indirectly via reduced investment in physical capital

Ugur and Dasgupta (2011) Examined the effect of corruption across countries

Corruption has a negative effect on per capita GDP growth.

Anoruo and Braha (2005) Investigated the impact of corruption on economic growth in 18 African countries

Corruption reduces economic growth directly by slowing productivity and indirectly by lowering investment

Aisen and Veiga (2013)

Assessed the effect of political instability on economic growth in a sample of 169 countries from 1960 to 2004

Higher political instability leads to lower GDP per capita growth rates via its effect on productivity growth as well as physical and human capital accumulation

Okafor et al. (2014) Investigated the impact of corruption in a sample of 48 SSA countries from 1996 to 2008

Corruption has a significant negative relationship with economic development Del Monte and Papagni

(2007)

Evaluated the factors responsible for high corruption in Italy during the 1963-2001 period

Level of economic development has a significant impact on corruption

Butkiewicz and Yanikkaya (2006)

Estimated the relationship between economic growth and five measures of democracy in 100 countries from 1970 to 1999

Democratic countries have higher growth rates

Table 1. A Summary of the Literature on Corruption, Political Instability and Economic Development

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of corruption on economic growth include the works of Mo (2001), Anoruo and Braha (2005), and Farooq et al. (2013). Similarly, others have confirmed a negative association between corruption and economic devel- opment (Bentzen, 2012; Blackburn & Forgues-Puccio, 2007; Okafor, Smith, & Ujah, 2014).

Some researchers have also found a negative effect of political instability on growth (see Asteriou & Price, 2001; Comeau, 2003; Devereux & Wen, 1998; Butkie- wicz & Yanikkaya, 2006). For example, Devereux and Wen (1998) developed a simple model that relates political instability to the share of government spend- ing in GDP and economic growth for a group of 52 countries during the 1960-1985 period. The authors discovered that political instability dampens eco- nomic growth but increases the share of government spending in GDP. Asteriou and Price (2001) employed GARCH-M models to examine the effect of political instability on economic growth in the United King- dom from 1961 to 1997. The authors found a strong negative effect of political instability on growth. Co- meau (2003) tested the hypothesis that socio-political instability has a negative effect on growth in a group of countries selected from the Latin American and East Asian regions. The author discovered that socio- political instability has a negative impact on growth.

Butkiewicz and Yanikkaya (2006) estimated the rela- tionship between economic growth and five measures of democracy using panel data for 100 countries dur-

ing the 1970-1999 period. The results suggested that democratic countries have higher growth rates.

Many studies have found that political instability has a negative effect on economic growth (see Ades &

Chua, 1997; Aisen & Veiga, 2013; Alesina et al., 1996;

Asteriou & Siriopoulos, 2000; Campos & Karanasos, 2008; Fosu, 2002; Mbaku, 1988). However, Butkiewicz and Yanikkaya (2005) found a weak relationship be- tween socio-political instability and economic growth.

The authors also discovered that the impact of socio- political instability is higher in more developed and highly democratic states. A summary of the literature review is presented in table 1.

The literature review clearly indicates that research- ers have not paid adequate attention to the issue of causality among corruption, political instability and economic development. Thus, this paper attempts to contribute to the literature by investigating the causal relationship among the variables in ECOWAS coun- tries.

Theoretical framework and model

Scholars have made attempts to theoretically estab- lish a link among corruption, political instability, and economic development. In explaining the connection between corruption, political instability and econom- ic growth, for instance, Mauro (2000) described a scenario in which an individual politician sets a high bribe rate. The attendant widespread corruption will

Author(s) Objective(s) Empirical evidence

Fosu (2002)

Studied the different effects of various elite political instability situations (which include coups d’état, abortive coups or coup plots) on economic growth in 31 SSA countries from 1960 to 1986

Abortive coups and coup plots rather than successful coups have a negative effect on economic growth

Mbaku (1988) Examined the impact of political instability on economic development in SSA countries

Lack of political stability has negatively impacted economic performance

Ades and Chua (1997)

Evaluated the effect of regional instability on economic growth in 98 countries from 1960 to 1985

Existence of negative spillovers in politically unstable neighboring countries

Alesina et al. (1996)

Investigated the relationship between political instability and GDP per capita growth in a sample of 113 countries from 1950 to 1982

Growth tends to be lower in countries and periods with a strong tendency for government collapse

Table 1. A Summary of the Literature on Corruption, Political Instability and Economic Development (Continued)

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have adverse effects on economic performance (that is, sluggish economic growth), leading to the collapse of the government. For example, corruption among government officials or bureaucrats reduces the amount of social services such as healthcare and edu- cation that alleviate poverty and inequality (Gupta, Davoodi, & Alonso-Terme, 2002) and therefore leads to social discontent, protests, strikes, and political vi- olence. Sustained dissatisfaction among citizens will lead to a collapse of (or a change in) government. In developed countries, a change in government occurs through the electioneering process (Gyimah-Brem- pong & Dapaah, 1996) and in line with constitutional provisions. By contrast, in developing countries such as those in the ECOWAS, an unconstitutional change in government through military intervention has always been the case. Military takeover in the ECOWAS region appears to be the norm rather than exception (Edi, 2006), and it tends to have a destabi- lizing impact on political stability in these countries because of their fragile political structures (Adelman

& Morris, 1968).

Moreover, frequent changes in government induce public or elected officials to practice rent-seeking be- havior because of the high uncertainty surrounding their tenure of office. In a previous study, Shleifer and Vishny (1993) cited in Park (2003) argued that if public officials realize that their term in office will be short- lived because of political instability, they will become irresponsible and become involved in rent-seeking be- havior. Using the same line of argument, Park (2003) opined that high uncertainty and anxiety among public officials (arising from political instability) would lead them to seek gain through corrupt means to protect their social status even after they no longer have their positions. Moreover, in explaining Lipset and Raab’s (1970) concept of “status strain”, Park (2003) empha- sized that the fear of a decline in status will compel people to do anything (including engage in corrupt behaviors) to maintain their status and property.

Economic development (or income level) largely promotes or reduces corruption and political instabil- ity in a country. Mauro (1995) proposed that low-in- come countries are likely to be corrupt and politically unstable. In fact, low income levels or civil servant wages encourage rent-seeking behavior because peo- ple see corruption as an opportunity to improve their

socio-economic well-being. By contrast, an improve- ment in economic conditions (such as higher wages or income) tends to lower corruption (Montinola

& Jackman, 2002; Van Rijckeghem & Weder, 2001;

Schumacher, 2013). Similarly, declining economic for- tunes encourages discontent and socio-political insta- bility. However, higher economic development, such as higher incomes, improves people’s well-being and promotes political stability (Adelman & Morris, 1968;

Helliwell, 1994).

Meanwhile, economic development can be influ- enced by the level of corruption and political instability through their negative impact on savings, investment and production, among other effects. For instance, political instability disrupts production activity, re- duces investment and negatively influences economic performance (Alesina & Perotti, 1996; Aisen & Veiga, 2013; Alesina et al., 1996). According to Butkiewicz and Yanikkaya (2005), one of the best measures to im- prove the economic well-being of people in the poorest nations is to prevent political instability. In the same vein, corruption discourages investment and produc- tion, leading to sluggish growth (Asiedu & Freeman, 2009; Gyimah-Brempong, 2002; Mauro, 1995). Thus, corruption, political instability and economic develop- ment appear to cause each other. Given the issues dis- cussed above, we hypothesize the following:

1: Political instability and economic development do not Granger-cause corruption.

2: Corruption and economic development do not Granger-cause political instability.

3: Corruption and political instability do not Grang- er-cause economic development.

To estimate the relationship between the variables, we formulate three models in which corruption (COR), political instability (POL) and economic development (PCY) are specified as a function of the other variables.

That is,

0 11 2 1

it it it it

COR =α α+ POLPCY U+ ……… 1

0 1 2 2 2

it it it it

POL =β +βCORPCY U+ 2………

0 1 2 3 3

it it it it

PCY =δ +δCORPOL U+ ……… 3

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Where i refers to a given country and t a given year;

αi, βi and δi are coefficients; and U is the error term.

The data used in this paper were obtained from three main sources: TI, ICRG and the World Bank’s World Development Indicators (WDI). Specifically, data on political instability were collected from the ICRG. Po- litical instability has been measured by the number of successful coups, the number of people killed in do- mestic mass violence incidents as a fraction of the total population, the number of attempted but unsuccessful coups, or the number of politically motivated assassi- nations (Alesina & Perotti, 1996). Unfortunately, such (rich) data are not available for most ECOWAS coun- tries for a considerable number of years. Moreover, the objective indices are not without shortcomings. For instance, frequent changes in government, which is an indication of political instability (Edwards, 1996), may give the wrong information about the political condi- tions in a country. Mauro (1995) noted that although Italy had more than fifty changes in government be- tween 1945 and 1995, the country remained relatively stable during the period. Thus, we captured political in- stability by using the ICRG political risk rating (index).

Although the ICRG index is subjective, it has been increasingly used in empirical research and has been found be highly associated with economic variables (see Erb, Harvey, & Viskanta, 1996; Hayakawa, Kimura,

& Lee, 2013). The index measures the extent of politi- cal instability or uncertainty in a country, and its com- ponents include political leadership, military role in politics, external conflicts, the role of organized religion in politics, racial and national tension, law and order, political terrorism, civil war, and political party devel- opment. The index ranges from 0% (indicating higher political instability) to 100% (indicating higher political stability), and it has been employed in previous studies (see Abu et al., 2013; Erb et al., 1996; Hayakawa et al., 2013; Heaney & Hooper, 1999; Linder & Santiso, 2002).

Corruption is difficult to measure/quantify, and what is perceived as a norm in one country at one point in time may be considered corruption in other countries. Also, given that most corrupt practices are regarded as unlawful activities, they occur in secrecy.

Thus, it is difficult to measure/quantify them. More- over, the only objective measure of corruption that is available is the number of individuals who have been convicted of engaging in corrupt practices. However,

higher conviction rates (as in the case of Singapore and Hong Kong) do not necessarily imply that cor- ruption is higher but may indicate the effectiveness of the judiciary and anti-corruption agencies in detecting and prosecuting offenders (Lambsdorff, 1999; 2006).

Given the weakness of such objective data, corruption perception indices (subjective data) have been widely used. Furthermore, because of the lack of adequate measurements of corruption, one may resort to using corruption perception indices (Gyimah-Brempong, 2002). In this study, therefore, we employed the TI corruption perception index (CPI) that has been em- ployed in many empirical studies as a measure of cor- ruption. The CPI reveals the extent to which a country is perceived to be corrupt. This index is also a reflec- tion of the depth and frequency of corruption (Swale- heen, 2007), and it ranges from 0 (very corrupt) to 10 (very clean).

Corruption perception indices are not completely devoid of criticism. For instance, as reported by Wil- liams and Siddique (2008) cited in Swaleheen (2007), some researchers have questioned the importance of the CPI for year-to-year comparisons. They have ar- gued that the increase in the number of countries cov- ered by the index over time has resulted in additional new data sources and improvements in the precision of estimates of the incidence of corruption, which could disturb the continuity of an index. However, Lambs- dorff (1999) allayed this fear and likened the problem to that typically encountered when designing the price index for a basket of goods while the composition of the basket is constantly changing. Often referred to as a composite index, the CPI has two main advantages (Méon & Sekkat, 2005). For instance, because basic indicators are constructed based on subjectivity, they may be biased. The composite index can help to cancel out the biases, thereby resulting in the determination of the average opinion on corruption. Second, given that the composite index is an aggregate of several other indices, it facilitates data availability for larger samples of countries. The corruption perception indi- ces have been found to be reliable because of their high correlations with important economic variables, sug- gesting that spuriousness is not a problem (Blackburn et al., 2010). The index has been employed in recent studies (Blackburn et al., 2010; Gyimah-Brempong, 2002; Swaleheen, 2007).

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Economic development is captured by income (GDP) per capita. Studies have used income per capita as a proxy for economic development (see Bentzen, 2012; Bollen & Jackman, 1985). Data on GDP per capita were obtained from the WDI. This paper con- siders ECOWAS countries (excluding Cape Verde and Benin because of unavailable data on political instabil- ity) and covers the 1996-2012 period. Although Benin and Cape Verde are not included in our analysis, their exclusion may not have had any serious effects on the results. For instance, countries with similar character- istics (such as the level of development) are considered in our analysis. Cape Verde has the highest GDP per capita ($4,000) in the ECOWAS region, followed by Ghana ($3,300) and Nigeria (2,700), which are includ- ed in the analysis. Similarly, Cote D’Ivoire ($1,700) has almost the same GDP per capita as Benin ($1,600).

Results

Having specified the respective models, we conducted a unit root test to ascertain whether the series used in this study are stationary. Standard economic theory requires series to be stationary prior to estimating their relation- ship to avoid generating spurious results. Fisher aug- mented Dickey-Fuller (Fisher-ADF) and Fisher Phillips- Perron (Fisher-PP) statistics were employed to test the unit root properties of the series. The results of the unit root test are presented in table 2.

The table clearly indicates that the series have a unit root at level but are stationary at the first difference. This outcome supports the claim that many macroeconomic variables are non-stationary at level but stationary after the first difference (Nelson & Plosser, 1982). Our next

task is to investigate if there is a long-term equilibrium relationship (cointegration) between the series using the Pedroni residual cointegration test (Pedroni, 1999). The Pedroni statistics tests (seven of them) were used to in- vestigate whether the error process of the estimated equa- tion is stationary and to test the null hypothesis of no cointegration against the alternative of cointegration. The first four statistics test the null hypothesis of no cointe- gration for all cross-sectional units (within a dimension), while the other three statistics test the null hypothesis of no cointegration based on pooling between dimensions.

The existence of cointegration suggests that the estimated relationship is not spurious. In addition, if the tests reveal the presence of cointegration, then causality will exist in at least one direction (Granger, 1986). The results of the cointegration test are presented in table 3.

Given that the variables are cointegrated, we took an- other step to determine the direction of causality between them. Granger (1969) proposed that variable X is said to

“Granger cause” variable Y if and only if Y is better pre- dicted by past values of X than by using past values of Y in either case. In other words, if X helps in forecasting Y, we can conclude that X Granger-causes Y. Thus, our main objective here is to examine whether current values of the individual dependent varble can be predicted by past val- ues of the explanatory variables. To employ the Granger causality test for the variables, we estimated the following multivariate vector error-correction models (VECM):

0 1 2

1 1

J J

it it j it j

j j

COR α α POL α PCY

= =

∆ = +

∆ +

∆ +

0 1 2 3 1 1 4

1 1 1 4

J J J

it it j it j it j t it

j j j

COR α α POL α PCY α COR φECT U

= = =

∆ = +

∆ +

∆ +

∆ + + … 4

Variables Fisher-ADF Fisher Phillips-Perron

Level First difference Level First difference

POL -1.0684

(0.1427)

-7.1952***

(0.0000)

-2.0456 (0.2004)

-10.3496***

(0.0000)

COR 3.6992

(0.9999)

-5.6420***

(0.0697)

4.8088 (1.0000)

-6.2817***

(0.0000)

PCY 5.9814

(1.0000)

-5.7279***

(0.0000)

7.9195 (1.0000)

-2.9273***

(0.0017) Table 2. Panel Unit Root Test Results for the Variables

Note: POL refers to political instability, COR refers to corruption, and PCY refers to economic development. The numbers in parentheses are probability values. *** indicate a rejection of the null hypothesis of the unit root at the 1% significance level.

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0 1 2 3 2 1 5

1 1 1 ..5

J J J

it it j it j it j t it

j j j

POL β β COR β PCY β POL φECT U

= = =

∆ = +

∆ +

∆ +

∆ + + ……

0 1 2 3 2 1 5

1 1 1

J J J ..5

it it j it j it j t it

j j j

POL β β COR β PCY β POL φECT U

= = =

∆ = +

∆ +

∆ +

∆ + + …… 5

0 1 2 3 3 1 6

1 1 1

...6

J J J

it it j it j it j t it

j j j

PCY δ δ COR δ POL δ PCY φECT U

= = =

∆ = +

∆ +

∆ +

∆ + + …

0 1 2 3 3 1 6

1 1 1 ...6

J J J

it it j it j it j t it

j j j

PCY δ δ COR δ POL δ PCY φECT U

= = =

∆ = +

∆ +

∆ +

∆ + + … 6

Where CORit and CORit j represent the current and lagged values of corruption, POLit and POLit j are the current and lagged values of political instabil- ity, and PCYit and PCYit j are the current and lagged values of the level of economic development, respec- tively. Additionally, ∆ is the first-difference opera-

tor, and Uit are the residuals. Moreover, ECTt1is the one period lag of the error-correction term, and the statistical significance of the ECTt1 is used to deter- mine the long-term causality.

The results of the Granger causality tests re- ported in table 4 indicate that there is short-term unidirectional causality from political instability to economic development, while there is long-term unidirectional causality from political instability and economic development to corruption. This re- sult implies that political instability Granger-causes economic development in the short term and that both economic development and political instabil- ity Granger-cause corruption in the long term in ECOWAS countries.

Statistics (Within dimension) Value

Panel v-statistic -1.2027

Panel rho-statistic 2.5870

Panel PP-statistic -2.2122**

Panel ADF-statistic -1.7342**

Statistics (Between dimensions) Value

Group rho-statistic 3.5304

Group PP-statistic -4.2650***

Group ADF-statistic -2.2412**

Table 3. Results of the Pedroni Residual Cointegration Test

Note: POL refers to political instability, COR refers to corruption, and PCY refers to economic development. ** and *** indicate a rejection of the null hypothesis of no cointegration at the 5% and 1% significance levels, respectively.

Dependent variable ΔCORt ΔPOLt ΔPCYt ECTt-1

ΔCORit - 1.6508 2.5074 -0.1882**

ΔPOLit 0.3609 - 0.0411 -0.0580

ΔPCYit 0.0197 11.2356*** - -0.0243

Table 4. Results of Granger Causality Test

Note: ** and *** indicate a rejection of the null hypothesis of no Granger causality at the 5% and 1% significance levels, re- spectively.

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Forecast Error Variance Decomposition Analysis

The Granger causality analysis conducted above is lim- ited to the 1996-2012 period, but it does not consider the dynamic interaction of the variables beyond that period. In an attempt to understand the dynamic re- lationship among corruption, political instability and economic development outside of the sample period of 1996-2012, we performed a forecast error variance de- composition analysis (FEVD) (Sims, 1980). The FEVD is useful in assessing the amount of variation in a vari- able caused by its own shock and by shocks to other variables. In the short term, a larger percentage of the variation in a variable results from its own shock, while in the long term, the impact of shocks on other vari- ables increases. Each of the variables in the system is disturbed by one standard deviation.

The results of the variance analysis presented in table 5 indicate that corruption is the most exogenous variable, followed by political instability and economic development. In the second year, for instance, 98.53%, 98.47% and 98.04% of the variations in the forecast error variance for corruption, political instability and economic development, respectively, is explained by its own shock. In explaining the shocks to corrup- tion, political instability is more important than eco- nomic development in both the short and long term.

Specifically, political instability explains 1.00% of the variations in corruption, while economic development accounts for 0.46% of the variations in corruption in the second year. Moreover, political instability explains 7.97% and 17.73% of the variations in corruption in the fifth and tenth years compared with the contribu- tions of economic development at 4.53% and 14.65%

during the same period.

Furthermore, corruption is more important than economic development in explaining shocks to po- litical instability in both the short and long term. In the second year, for instance, 1.43% of the variation in political instability is explained by corruption, but economic development accounts for 0.10% of the variation in political instability. Similarly, corruption explains 8.35% and 20.81% of the variations in politi- cal instability, but the contribution of economic devel- opment to variations in political instability is 0.61%

and 1.02% in the fifth and fifteenth year, respectively.

Moreover, corruption is more important than political

instability in explaining shocks to economic develop- ment in the short and long term. In the second year, for instance, corruption accounts for 1.95% whereas political instability explains 0.32% of the variation in economic development. In the same vein, corruption accounts for 0.76% and 0.55% of the variation in eco- nomic development, while political instability explains 0.27% and 0.35% of this variation in the tenth and fif- teenth year, respectively.

Impulse Response Function Analysis

The causality tests conducted earlier provide infor- mation only on the direction of causality among the variables; these tests do not indicate whether the sign of the relationship is positive or negative. In addition, causality tests are unable to explain how much time is needed for the impacts to occur in the system. To this end, we conducted impulse response function analysis (IRF) to trace how each variable responded to a shock to the other variables in the system. The IRF results for corruption, political instability and economic develop- ment in response to a one-standard-deviation shock in corruption, political instability and economic develop- ment over the 15-year period are reported in table 6.

The results of the IRF reveal that over a period of fifteen years, a one-standard-deviation shock to political instability exerts a positive impact on cor- ruption. A shock to political instability has a posi- tive impact on corruption for the first five years, but between the tenth and fifteenth year, the im- pact declines but remains near the positive region.

Similarly, a shock to economic development has a positive impact on corruption between the first and fifteenth years. Regarding the response of political instability to a shock in corruption and economic development, the results illustrate that a shock to corruption exerts a positive effect on political in- stability, but the impact declines continuously over the fifteen-year period and remains near the posi- tive region. A shock to economic development has a negative impact on political instability, but the effect decreases over the fifteen-year period. Fur- thermore, the results demonstrate that a shock to corruption exerts a negative impact on economic development, while a shock to political instability exerts a positive impact on economic development over the fifteen-year period. Although the impact of

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political instability fell between the first and second years, it shows a rising trend from the third to fif- teenth years.

In sum, the empirical results indicate that there is positive causality running from political instabil- ity to economic development in the short term and from political instability and economic development to corruption in the long term in ECOWAS coun- tries. In separate studies, Fosu (1992, 2001, 2002a, 2002b) confirmed that political instability is deleteri- ous to economic growth in Sub-Saharan African (SSA) countries. For instance, Fosu (1992) found the adverse impact of political instability in SSA to be almost 33

percent of GDP growth over the 1960-1986 period.

Similarly, Fosu (2002b) discovered that political in- stability adversely affected the transfer of economic growth to human development (measured as a change in an index of life expectancy and literacy) between 1970 and 1985. Many years of political instability (mil- itary intervention in politics) have contributed to the poor economic performance of ECOWAS countries such as Nigeria. Between 1960 and 1995, Nigeria failed to make any meaningful economic progress (given its potential) because of numerous military takeovers. In addition to military coups, conflicts caused primarily by armed rebels have been on the rise since the 1990s Relative Variance of COR Relative Variance of POL Relative Variance of PCY

Years COR POL PCY Years COR POL PCY Years COR POL PCY

1 100.00 0.00 0.00 1 0.03 99.97 0.00 1 1.95 0.32 97.72

2 98.53 1.00 0.46 2 1.43 98.47 0.10 2 1.67 0.29 98.04

3 95.61 2.95 1.44 3 3.60 96.17 0.27 3 1.46 0.26 98.28

4 91.77 5.39 2.84 4 6.00 93.55 0.45 4 1.29 0.25 98.46

5 87.50 7.97 4.53 5 8.35 91.04 0.61 5 1.16 0.24 98.60

10 67.62 17.73 14.65 10 16.75 82.23 1.02 10 0.76 0.27 98.97

15 53.42 21.33 25.24 15 20.81 78.17 1.02 15 0.55 0.35 99.10

Table 5. Results of the Variance Decomposition Analysis

Note: Cholesky ordering: COR, POL and PCY

Response of COR Response of POL Response of PCY

Years COR POL PCY Years COR POL PCY Years COR POL PCY

1 0.31 0.00 0.00 1 0.05 2.80 0.00 1 -12.90 5.23 91.33

2 0.24 0.04 0.03 2 0.44 2.44 -0.12 2 -11.08 4.69 92.88

3 0.19 0.06 0.05 3 0.70 2.17 -0.19 3 -9.78 4.48 94.65

4 0.15 0.08 0.06 4 0.86 1.96 -0.24 4 -8.84 4.49 96.60

5 0.13 0.09 0.07 5 0.96 1.81 -0.25 5 -8.14 4.67 98.70

10 0.08 0.10 011 10 1.00 1.36 -0.21 10 -6.46 6.60 110.70

15 0.06 0.09 0.14 15 0.86 1.12 -1.11 15 -5.77 9.07 124.75

Table 6. Results of the Impulse Response Function Analysis

Note: Cholesky ordering: COR, POL and PCY

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in Liberia, Sierra Leone, Guinea-Bissau, Mali, Cote D’Ivoire and, more recently, in Nigeria. Such rising conflict has led to the displacement and destruction of human and physical capital, thus further contributing to the underdevelopment of the region.

Moreover, military rulers in the ECOWAS region have been blamed to a greater extent for the institution- alization of corruption as evident in some countries.

The various military regimes alluded to corruption as one of the reasons that they seized power (Edi, 2006).

Furthermore, Nigeria’s former military rulers have been accused of stealing and mismanaging several bil- lions of dollars belonging to the country. Recently, the Swiss government returned some of the funds alleged to have been looted by the late General Sani Abacha to the Nigerian government. Similarly, General Ibrahim Babangida was accused of mismanaging US$12 billion of oil windfalls while he headed the military Junta for 8 years in Nigeria. Moreover, after 15 years of democ- racy, the political class has also had its fair share of cor- ruption-related activities. Many former governors and cabinet members have been investigated for helping themselves to state resources. For instance, a former governor of the oil-rich Delta state in Nigeria (James Ibori) was convicted and consequently sentenced to 13 years in prison by the British government for stealing public funds. In the same vein, high-ranking military officers in Guinea Bissau have been accused of not only legitimizing corruption but they aiding drug traffick- ing along the shores of their country.

Conclusion and recommendations

Given that less developed ECOWAS countries are corrupt and politically unstable, it is important to ex- amine the interaction among economic development, corruption and political instability in these countries.

This paper examines the causal relationship among corruption, political instability, and economic devel- opment in ECOWAS countries within a multivariate cointegration and error-correction framework. The Pedroni cointegration test reveals that the variables are cointegrated, indicating the existence of a long-term equilibrium relationship among corruption, political instability, and economic development. Having con- firmed the existence of cointegration, we investigated the direction of causality between the variables using the VECM. The results illustrate that there is short-

term unidirectional causality from political instability to economic development, while in the long term, cau- sality runs from economic development and political instability to corruption in ECOWAS countries.

Moreover, we employed the FEVD and IRF to ex- amine the dynamic interaction among corruption, political instability and economic development in ECOWAS outside the sample period of 1996-2012. The FEVD confirmed that corruption, political instability and economic development are endogenous. Political instability is the most important variable accounting for shocks in corruption, while corruption is the most important variable accounting for shocks in political instability and economic development. Furthermore, the IRF illustrated that a shock to political instability and economic development has a positive effect on corruption. Additionally, a shock to corruption has a positive impact on political instability, while a shock to economic development has a negative effect on po- litical instability. In addition, a shock to political insta- bility has a positive effect on economic development, whereas a shock to corruption has a negative impact on economic development. Thus, there is positive unidirectional causality from political instability and economic development to corruption in the long term and positive unidirectional causality from political in- stability to economic development in the short term in ECOWAS countries.

The findings of this study suggest that years of po- litical instability have contributed to the high rate of corruption and underdevelopment in ECOWAS coun- tries. Researchers have confirmed that corruption in- creases with political instability (see Lederman et al., 2005; Leite & Weidmann, 1999; Park, 2003). Likewise, other proxies of political instability have also been found to be correlated with corruption. For instance, it has been observed that democracy (as measured by press freedom) is negatively related to corruption (Brunetti & Weder, 2003; Lederman et al., 2005). Simi- larly, improvements in civil liberty reduce corruption (Lederman et al., 2005). In addition, higher levels of decentralization reduce corruption by bringing gov- ernment closer to the people and ensuring that gov- ernment officials can be held accountable when the need arises (Fisman & Gatti, 2002). Furthermore, po- litical instability destroys physical capital and displaces human capital (Le, 2004), disrupts production activ-

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ity (Aisen & Veiga, 2013), and encourages the viola- tion of property rights, including lack of guarantee for contracts (Svensson, 1998). All of these consequences adversely affect the economy (Aisen & Veiga, 2013;

Alesina et al., 1996).

High levels of corruption and underdevelopment in ECOWAS have been blamed on political instabil- ity primarily resulting from many years of military rule (including ethno-religious crises). For instance, Edi (2006) posited that the failure to improve socio- economic conditions and high corruption, among other factors, led to reoccurring military takeovers in ECOWAS countries. Based on our findings, ECOWAS governments should employ policies to promote po- litical stability to improve economic development and reduce corruption in the region. However, as we stated in the introduction, the use of a single policy option of political stability may not be sufficient to achieve higher levels of economic development and to elimi- nate corruption from ECOWAS countries.

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